Combining multiple data sets from HBGDKi using ML tools for prediction, classification and topic discovery may yield new insights for adverse birth outcomes and intermediate outcomes of interest. The study is based on a set of epidemiological, clinical and biochemical variables risk stratification algorithms for various adverse outcomes with practical applicability in health programme, and clinical settings may be feasible to develop using ML tools.ML can be used to suitably impute/bin missing values within datasets and merge variables from multiple datasets using robust data triangulation algorithms.
Grant ID
BT/ki-Data0375/06/18
Show on Hub
On
Show on Spoke
On
Follow-on Funding
Off
Lead Funding Organization
Initiatives
Principal Investigator
Award Manager
Individual Funder Information
Funding Organization
Funding Amount (in original currency)
5670000.00
Funding Currency
INR
Exchange Rate (at time of payment)
0.0166700000
Funding Amount (in USD)
94519.00
Project Type
Project Primary Sector
Funding Date Range
-
Funding Total (In US dollars)
94518.90
Co-Funded
False